Abstract: We propose a multi-agent protocol for distributed learning of causal networks, aimed both at (i) reducing the complexity of learning large causal networks and (ii) letting agents in a MAS cooperate to unveil causal relationships that individuals could not reveal by themselves, due to partial observability.
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